Hardware Trojan Detection Using Unsupervised Deep Learning on Quantum Diamond Microscope Magnetic Field Images

Author:

Ashok Maitreyi1ORCID,Turner Matthew J.2ORCID,Walsworth Ronald L.2ORCID,Levine Edlyn V.3ORCID,Chandrakasan Anantha P.1ORCID

Affiliation:

1. Massachusetts Institute of Technology, Cambridge, MA, USA

2. University of Maryland, College Park, MD, USA, USA

3. Harvard University, Cambridge, MA, USA and The MITRE Corporation, Bedford, MA, USA and University of Maryland, College Park, MD, USA

Abstract

This article presents a method for hardware trojan detection in integrated circuits. Unsupervised deep learning is used to classify wide field-of-view (4 × 4 mm 2 ), high spatial resolution magnetic field images taken using a Quantum Diamond Microscope (QDM). QDM magnetic imaging is enhanced using quantum control techniques and improved diamond material to increase magnetic field sensitivity by a factor of  4 and measurement speed by a factor of  16 over previous demonstrations. These upgrades facilitate the first demonstration of QDM magnetic field measurement for hardware trojan detection. Unsupervised convolutional neural networks and clustering are used to infer trojan presence from unlabeled data sets of 600 × 600 pixel magnetic field images without human bias. This analysis is shown to be more accurate than principal component analysis for distinguishing between field programmable gate arrays configured with trojan-free and trojan-inserted logic. This framework is tested on a set of scalable trojans that we developed and measured with the QDM. Scalable and TrustHub trojans are detectable down to a minimum trojan trigger size of 0.5% of the total logic. The trojan detection framework can be used for golden-chip-free detection, since knowledge of the chips’ identities is only used to evaluate detection accuracy.

Funder

MITRE Innovation Program

NSF

Analog Devices Fellowship

MathWorks Engineering Fellowship

DARPA DRINQS program

Publisher

Association for Computing Machinery (ACM)

Subject

Electrical and Electronic Engineering,Hardware and Architecture,Software

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2. Uncertainty-Aware Hardware Trojan Detection Using Multimodal Deep Learning;2024 Design, Automation & Test in Europe Conference & Exhibition (DATE);2024-03-25

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